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Research on Pedestrian Detection Technology Based on MSR and Faster R-CNN

机译:基于MSR和更快的R-CNN的行人检测技术研究

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In order to avoid the problem of poor illumination characteristics and inaccurate positioning accuracy, this paper proposed a pedestrian detection algorithm suitable for low-light environments. The algorithm first applied the multi-scale Retinex image enhancement algorithm to the sample pre-processing of deep learning to improve the image resolution. Then the paper used the faster regional convolutional neural network to train the pedestrian detection model, extracted the pedestrian characteristics, and obtained the bounding boxes through classification and position regression. Finally, the pedestrian detection process was carried out by introducing the Soft-NMS algorithm, and the redundant bounding box was eliminated to obtain the best pedestrian detection position. The experimental results showed that the proposed detection algorithm achieves an average accuracy of 89.74% on the low-light dataset, and the pedestrian detection effect was more significant.
机译:为了避免照明特性差和定位精度不佳的问题,提出了一种适合弱光环境的行人检测算法。该算法首先将多尺度Retinex图像增强算法应用于深度学习的样本预处理,以提高图像分辨率。然后利用更快的区域卷积神经网络训练行人检测模型,提取行人特征,通过分类和位置回归得到边界框。最后,通过引入Soft-NMS算法进行行人检测过程,并消除了多余的边界框以获得最佳的行人检测位置。实验结果表明,所提出的检测算法在弱光数据集上的平均准确率达到89.74%,对行人的检测效果更为显着。

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